How this skill is triggered — by the user, by Claude, or both
Slash command
/sage:reflectThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
- Announce: "Sage → reflect workflow." before starting work
Look back. Extract learnings. Seed the next cycle.
Scan .sage/work/ for recently completed initiatives
(status: completed in frontmatter). Scan .sage/docs/ for
research and analysis artifacts. Read .sage/decisions.md
for the full decision trail.
If no completed work exists: "Sage: No completed initiatives found. /reflect works best after a deliver cycle. Describe what you want to reflect on, or type / for other commands."
Sage → reflect workflow. Looking back at what was done.
[1] Full initiative — review the entire cycle for [initiative name] [2] Recent work — reflect on the last few decisions [3] Specific topic — describe what you want to reflect on
Pick 1-3, type / for commands, or describe what you need.
For full initiative review, gather and present:
Sage: Cycle review for [initiative name].
Timeline: [Date] — Brief approved: [summary] [Date] — Spec approved: [key decisions] [Date] — Plan: [N] tasks planned [Date] — Build complete: [what was shipped]
Decisions made: [count from decisions.md] Approaches tried: [count from scratch.md if exists] Learnings stored: [count from self-learning entries]
Key artifacts: .sage/work/[initiative]/brief.md .sage/work/[initiative]/spec.md .sage/docs/[related research/analysis]
Ask the user for real-world feedback. This is the human input Sage cannot generate — the signal from reality.
Sage: Now I need your perspective on how this went.
[1] What worked well? (What should we do again?) [2] What didn't work? (What caused friction or rework?) [3] What surprised you? (What was unexpected?) [4] What feedback have you received? (From users, team, stakeholders)
Share any or all — or describe your overall assessment.
Pick 1-4, type / for commands, or describe what you need.
Listen to the user's responses. Ask follow-up questions if the feedback is vague — specifics make better prevention rules.
Based on the cycle review + user feedback, identify learnings in three categories:
Reinforce — what went well and should become standard practice. Prevent — what went wrong and should be avoided next time. Improve — what could be better with a specific change.
For each learning, write a WHEN/CHECK/BECAUSE prevention rule:
WHEN: [situation that triggers this learning]
CHECK: [observable condition to verify]
BECAUSE: [what happens if you don't — the consequence]
Learnings quality check (before presenting):
🔒 LEARNINGS CHECKPOINT (Zone 2):
Sage: Learnings extracted from [initiative/topic].
Reinforce:
Prevent:
Improve:
[A] Approve — store learnings [R] Revise [N] New session
Pick A/R/N, or tell me what to change.
On approval:
Store each learning via sage_memory_store with tags:
self-learning, reflect, [initiative-slug], and
category tag (reinforce, prevent, or improve).
Update conventions.md if any learning revealed a project pattern that should become a convention. Announce what was added.
Save reflection report to .sage/docs/reflect-[slug].md
with the full cycle review, user feedback, and learnings.
Append to decisions.md:
### YYYY-MM-DD — Reflection: [initiative/topic]
[Summary of key learnings and what changes going forward.]
The most powerful step — connect learnings to future work.
Sage: Reflection complete. [N] learnings stored.
Seeds for next cycle: [Specific recommendation based on learnings, e.g., "Start with payment edge case research next time — this area took 3x longer than expected."]
Report: .sage/docs/reflect-[slug].md
Next steps: /research — start the next initiative (learnings loaded via Rule 0) /build — spec → plan → implement → verify /design — brief → spec → copy
Type a command, or describe what you want to do next.
Good reflection output:
self-learning + reflect tags so Rule 0
memory search finds them in future cycles.npx claudepluginhub xoai/sage --plugin sageAnalyzes conversations after significant work or 'reflect' triggers to extract learnings, classify them, and integrate into laws, skills, rules, or documentation via structured tasks.
Conducts structured retrospectives on completed projects, incidents, decisions, or periods to extract updated mental models via reflection lenses separating facts from recollections.
Generates adaptive-depth session retrospective reports (retro.md) from plan.md and lessons.md, converting outcomes into persistent process improvements. Supports deep/light modes and directory resolution logic.